Abstract
This study investigates impacts of cloudiness on surface radiation budget and temperature from 1983 to 2018 in Nigeria, West Africa. The National Aeronautics and Space Administration meteorological datasets were used to achieve this objective. Net radiation (R) increased latitudinally from the coast to the inland areas. The least value of R was obtained in wet season which coincided with the period when cloud cover was at its optimal. We obtained significant decreasing trends (− 0.110 to − 0.536 Wm−2 year−1) in R but significant increasing trends in cloud cover in most parts of the region. Under clear-sky conditions, however, significant increasing trends (0.256–0.807 Wm−2 year−1) in R were obtained. Annual mean temperature showed significant upward trends under all-sky (0.009–0.059 °C year−1) and clear-sky (0.019–0.072 °C year−1) conditions. Furthermore, significant negative correlations (− 0.70 ≤ r ≤ − 0.95) were obtained between monthly values of cloud cover and R over the country. However, r values for cloud cover and temperature were positive over Sahel (r ~ 0.65) but negative over Guinea (r ~ 0.45); both significant at p < 0.05. Changes in R were accounted for by 21 to 26% variations in cloud cover, while fluctuation in temperature was explained by about 14% variation in cloud cover over Sahel region at p < 0.05. Our results revealed that the surface radiation budget was significantly perturbed by variations in cloudiness which resulted in net cloud-radiative cooling (− 30 Wm−2) over Guinea but warming over Savannah (25 Wm−2) and Sahel (50 Wm−2) zones.
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1 Introduction
The interaction of solar radiation components with the earth’s atmosphere maintains the energy balance and determines the temperature of the earth’s surface [1, 2]. Thus, observations of the modulations of the shortwave (SW) and longwave (LW) by cloud-radiative forcing could provide useful insights into the cloud-climate interaction [3, 4].
Fraction of the incoming solar energy reflected by Earth back into atmosphere is called Earth’s planetary (surface) albedo. It is a fundamental component of the processes that govern the magnitude, distribution and variability of Earth’s climate and climate change [5, 6]. Surface albedo is highly variable, depending on many factors, such as land-cover types, snow/ice cover, surface roughness or textural characteristics, mineral composition soil moisture content and human activities, such as deforestation, agriculture, irrigation, pollution and urbanization [7,8,9,10,11,12].
A linear relationship between the moisture content and surface albedo has been widely documented [13, 14]. In agreement with this assertion, Audu et al. [15] reported higher surface albedo (~ 0.6) in wet season than (~ 0.4) in dry season over Sahel region in northern Nigeria. They attributed higher albedo and lower incoming solar radiation obtained in wet season to the rain-bearing clouds which pervaded the sky in the rainy season compared to the dry season. It has also been reported that natural phenomena such as wild fire could alter surface albedo [12, 16,17,18].
The spatial and temporal variation of the surface net (all-wave) radiation, which is the sum of SW and LW net radiation, is responsible for the re-distribution of the available energy. For example, net radiation controls the inputs of latent and sensible heat fluxes into the atmosphere, and the oceanic heating over the ocean [12]. Radiative forcing is an externally imposed change in the radiative energy budget of the Earth’s climate system [19]. The energy budget is characterized by an approximate balance between SW absorption and LW emission by the climate system [20,21,22]. Change in radiative forcing, which can affect either the SW or LW components of the radiative budget, can be caused by a number of factors such as variations in solar insolation, alteration in surface boundary conditions related to land use change and desertification, or natural and anthropogenic perturbations to the radiatively active species in the atmosphere known as greenhouse gases e.g. CO2, CH4, N2O and the halocarbons [21, 23].
Furthermore, clouds and aerosols can exert a strong influence on regional radiative balance by reflecting SW radiation back to space, emitting LW radiation to the surface and absorbing LW radiation emitted by the warmer earth; thereby providing one of the strongest feedback pathways in the climate system [4, 24,25,26,27,28]. Thus, changes in aerosol loading and cloud cover as well as cloud properties could cause a significant reduction in surface solar radiation [29]. In addition, because clouds interact so strongly with both SW and LW radiation, small changes in cloudiness could have a large effect on the climate system [30, 31]. Atmospheric cloud-radiative effects (CRE) describe the change in radiative heating within the atmosphere owing to clouds. The literature revealed that CRE increases with cloud cover and decreases with the solar zenith angles [32]. It has also been reported that the effects of clouds on the radiation balance at the top-of-the-atmosphere (TOA) and within the troposphere are quite different from their effect at the Earth’s surface [3, 33]. Clouds, on average, is found to cool the surface by reflecting SW radiation and warm it by increasing the downward flux of LW radiation [26]. Thus, the effect of clouds on the atmospheric energy budget, however, is found to be less straightforward [33]. Also, clouds could either warm or cool the atmosphere, depending on their vertical structure. For example, Slingo and Slingo [34] reported that low clouds can cool the atmosphere by increasing the downward emission of LW radiation, while high clouds warm it by decreasing the upward emission of LW radiation. Within deep convection in the tropics, where high clouds dominate, cloud-radiation interactions warm the upper troposphere because absorption of LW and SW radiation is much larger than the cloudy emission of LW radiation [33, 35]. Similarly, isolated low clouds were found to cause net radiative cooling of the atmosphere, which reduces the warming from other cloud types by approximately 10% [36]. The combination of these effects increases the cloud-radiative effect at the TOA. It has also been shown that perturbations to the atmospheric radiation budget, that are induced by cloud changes in response to climate forcing, dictate the eventual response of the global-mean hydrological cycle to climate forcing [24]. Hence, little changes in the cloud-radiative forcing fields can play a significant role as a climate feedback mechanism [3, 33].
Several studies have investigated variations and implications of surface radiation balance on the climate of West Africa [14, 25, 37,38,39,40,41,42]. The literature revealed significant variations in seasonal patterns of net radiation over the humid tropical rainforest (i.e. Guinea zone) [9], and the Sahelian region of West Africa [41]. It has also been documented that cloud processes, level and types modulate LW and SW radiation components, which affect surface temperature and water cycle in the region [25]. During the wet season (July and August), the heavy cloud blocks the direct component of the solar irradiance resulting to the observed minimum value of daily energy over West Africa [41, 42]. It has been shown that dust particles have a complex impact on the radiative transfer process because of their ability to interact both in shortwave and longwave radiation [29]. As such, due to the fact that West Africa is notably subject to large smoke and mineral dust loads, the regional radiative budget is found to be significantly impacted [39, 43]. Annual cycle of radiation is also reported to have a substantial influence on the seasonal variation of the monsoon system over West Africa [44]. However, some previous studies over West Africa used radiative models to estimate radiation components, while a few others used ground measurements for just a few periods of time e.g. 1 to 24 months [37,38,39]. This was so because long-term data (for more than 2 years) on net radiation are still scarce for most parts of West Africa [37] due to high cost of maintenance of net radiation measurements on a continuous long-time basis [9, 45]. Thus, availability of satellite-derived radiation data such as those provided by the National Aeronautics and Space Administration (NASA) promises to complement the paucity of these measurements, even though such data do not have the spatial or temporal resolution that in situ net radiation sensors provide. Some of these available studies revealed that cloud formation is a major source of uncertainty for future climate projections through a diversity of feedbacks between clouds and radiative processes in the region. In addition, dust particles during the dry Harmattan season, particularly in the West African Sahel, have been shown to have a complex impact on the radiative transfer process because of their ability to interact both in SW and LW radiation [25]. However, long-term variation in surface radiation balance and its impacts on cloudiness in different parts of West Africa is still not yet fully understood. Therefore, the present study investigates annual and seasonal variations in cloud cover from 1983 to 2018 and their impacts on the surface radiation budget and temperature over different climatic zones of Nigeria.
2 Materials and methods
2.1 Study area
Nigeria (Fig. 1) has a unique tropical climate with two prominent seasons dominated by the West African monsoon, WAM [46,47,48]. WAM flow produces a wet season of several months of rainfall and a dry season during which the low-level flow transports hot and dry air from the Sahara Desert into the northern Sahel [40]. The most clearly marked spatial differences in the regional climate are found between the highly humid and relatively colder zone in the south and a semi-arid region in the interior north [49].The wet season is longer in the south (April–October) than the north (May/June–September) while total annual rainfall are within the range of 1500–2000 mm/year and 450–600 mm/year in the south and north, respectively [50, 51]. Daily temperature in the south and northern parts of the country ranges from 23 to 32 °C and 18 to 38 °C, respectively [52]. The topography and vegetation zones are shown in Fig. 1. The topography ranges from lowland (20–100 m) along the Atlantic coastline areas in the south to high plateau in the central north (700–800 m) and mountains (800–1500 m) along the eastern border (Fig. 1b). The southern coastline areas are covered with mangrove forest and fresh water swamp (Fig. 1c). It is followed by rainforest in the southwestern zone, tall and short grass savannah in the central and parts of the northern zones as well as marginal savannah in the north-eastern border.
2.2 Data source
Essentially, we analyzed monthly climatology datasets of surface radiation components, near and skin surface temperatures as well as cloud cover of the National Aeronautics and Space Administration’s (NASA) Modern-Era Retrospective Analysis for Research and Applications (MERRA) for 1983–2018 period over Nigeria, West Africa (Fig. 1a). The data were obtained from the archive of the Prediction of Worldwide Energy Resource (POWER) project supported by the National Aeronautics and Space Administration (NASA) and Langley Research Center, LaRC (https://power.larc.nasa.gov/). They are improved global meteorological datasets generated with version 5.12.4 of the Goddard Earth Observing System (GEOS) atmospheric model and data assimilation system (DAS) with spatial resolution of 0.5 degree longitude and 0.5 degree latitude [53, 54]. The performance of NASA-MERRA data product for global solar radiation had been previously evaluated and validated over Nigeria, West Africa [55, 56] and other regions around the world e.g. China [57], Pakistan [58], Brazil [59] and wider areas [60]. These studies show that the datasets exhibit tolerable discrepancies compared with ground observations (and other global reanalyses) and provide scientific reference for rational use of NASA datasets in the selected regions. Consequently, the products have been widely used for climate impacts studies over different parts of the world including Nigeria, West Africa [61, 62].
2.3 Methods and data processing
Data analyses were carried out over the entire Nigerian domain (4°N–14°N; 2°E–15°E) with a special focus on three designated climatic zones (Fig. 1a) using a widely used climate classification method over West Africa based on similarities in land-use/land-cover, climate and ecosystems [48, 52]. These zones are: (1) Guinea (between latitude 4°N and 8°N); (2) Savannah, (8°N and 11°N and; (3) Sahel (11°N and 14°N). This classification enables us to effectively assess the contributions of cloud cover on the radiation budget over different parts of the country. The relevant NASA’s MERRA datasets obtained, as provided by POWER, consist of, cloud cover fraction, surface albedo, near surface temperature (at 2 m), skin surface temperature, all-sky downwelling (incoming) shortwave (SW) radiation, \(R_{{{\text{S}} \downarrow }}\) and longwave (LW) radiation, \(R_{{{\text{L}} \downarrow }}\) as well as clear-sky downwelling SW. Following the convection of signs, downwelling and upwelling radiations at the earth surface are positive and negative, respectively.
The upwelling SW radiation, \(R_{{{\text{S}} \uparrow }}\), under all-sky and clear-sky conditions was estimated as the fraction of the corresponding \(R_{{{\text{S}} \downarrow }}\) that is reflected by the surface, i.e.,
where α is the surface albedo.
The net SW radiation, \(R_{\text{S}}\), under all-sky and clear-sky conditions were then estimated as:
The upwelling LW radiation \(R_{{{\text{L}} \uparrow }}\) under all-sky conditions and both \(R_{{{\text{L}} \downarrow }}\) and \(R_{{{\text{L}} \uparrow }}\) under clear-sky were estimated using the Stefan–Boltzmann equation (Eq. 3) and the parameterization scheme for atmospheric emissivity (Eq. 4) proposed by Staley and Jurica [63] as widely used in the literature [64,65,66]. Specifically, LW radiation \(R_{{{\text{L}} \uparrow }}\) under all-sky and clear-sky conditions was obtained as:
where \(\varepsilon_{\text{s}}\) of the emissivity of the surface, sigma is the Stefan–Boltzmann constant (5.6705 × 10−8 W m−2 K−4) and TS the skin surface temperature in kelvin under all-sky or clear-sky conditions. The country’s vegetation cover classification in Fig. 1c (adapted from Abiodun et al. [52]) was used to derive spatial distribution of surface emissivity (Fig. 1d) using the values previously obtained with remote-sensing technology over the region [67] and similar vegetation types elsewhere [68, 69].
For \(R_{{{\text{L}} \downarrow }}\) under clear-sky conditions, however, we used air temperature, Ta in Eq. (3) with the following expression for atmospheric emissivity, \(\varepsilon_{a}\) [1, 64]:
where PW is the partial water pressure/actual vapor pressure in hectopascal expressed as a function of relative humidity, RH (%) and temperature [70, 71]:
Then, the net LW radiation, \(R_{\text{L}}\) and net (all-wave) radiation, R, are given in Eqs. (6) and (7):
Cloud-radiative effects for shortwave (CRESW) and longwave (CRELW) were estimated as [3, 26, 30]:
The values of CRESW and CRELW provide measure of the impacts of clouds on SW and LW radiation, respectively—where positive CRESW or CRELW means heating effect and their negative values indicate cooling effect.
Then, the net radiative effects CRE was computed as:
Analysis of inter-annual and seasonal variations in surface radiation budget, temperature and cloud cover was obtained, and the results were presented and discussed. For all the years (1983–2018), the standardized anomaly, φ, was calculated as:
where x is the actual value of each parameters (radiation components, temperature and cloud cover), \(\bar{x}\) is their long-term means and σ the standard deviations.
We adopted a least-square-fit and Mann–Kendall, MK test [72, 73] to investigate the magnitudes and significance of the annual trends of all the parameters at 99% (0.1), 95% (0.05) and 90% (0.01) confidence levels. The MK statistics, as fully described in the literature [51, 74, 75], is a nonparametric trend test which is often used to test for trends in climatological-data time series. In addition, correlations between all monthly mean values (1983–2018) of cloud cover and radiation components as well as temperature were computed, while a linear regression analysis was performed to determine the contributions of cloudiness (independent variable) to surface radiation budget and temperature.
3 Results and discussion
3.1 Annual mean variations in surface radiation budget and temperature
Figure 2 depicts the long-term annual mean (1983–2018) spatial variations in both upwelling and downwelling radiation components under all-sky condition over Nigeria. By sign conventions, positive and negative signs denote downwelling and upwelling radiation components, respectively. Downwelling SW (\(R_{{{\text{S}} \downarrow }}\)) and LW (\(R_{{{\text{L}} \downarrow }}\)) radiation were about 200 and 410 Wm−2 over the Guinea zone, respectively (Fig. 2a, b). Their estimates over Sahel were 270 Wm−2 (\(R_{{{\text{S}} \downarrow }}\)) and 375 Wm−2 (\(R_{{{\text{L}} \downarrow }}\)). Results, thus, revealed that \(R_{{{\text{S}} \downarrow }}\) increased inland from the coast, while \(R_{{{\text{L}} \downarrow }}\) decreased inland. This could be explained by spatial distribution of cloud cover which decreases inland from the coast. Our results further confirm previous findings that \(R_{{{\text{S}} \downarrow }}\) over West Africa increases latitudinally from the coast [55, 76]. The upwelling SW \((R_{{{\text{S}} \uparrow }} )\) and LW (\(R_{{{\text{L}} \uparrow }}\)) radiation were − 35 and − 440 Wm−2 over Guinea, respectively, while \(R_{{{\text{S}} \uparrow }}\) ≈ − 90 Wm−2 and \(R_{{{\text{L}} \uparrow }}\) ≈ − 460 Wm−2 over Sahel (Fig. 2c, d). Net SW (\(R_{\text{S}}\)) and LW (\(R_{\text{L}}\)) radiation were about 150 and − 20 Wm−2 over Guinea, respectively (Fig. 2e, f). However, the values of \(R_{\text{S}}\) (≈ 180 Wm−2) and \(R_{\text{L}}\) (≈ − 170 Wm−2) were higher in both Sahel and Savannah than in the Guinea (130 and 40 Wm−2, respectively). The values obtained were within the range of values previously reported in literature [9, 77]. Furthermore, annual mean variations in \(R_{\text{S}}\) and \(R_{\text{L}}\) radiation components under clear-sky are shown in Fig. 3. As expected, \(R_{\text{S}}\) radiation components under clear-sky were generally higher in magnitudes than their values under all-sky condition while those of \(R_{\text{L}}\) components were reverse [78]. Over the country,\(R_{{{\text{S}} \downarrow }}\) ranged between 255 Wm−2 (in Guinea) and 290 Wm−2 (Sahel) while \(R_{{{\text{S}} \uparrow }}\) ranged between − 40 Wm−2 (Guinea) and − 100 Wm−2 (Sahel) (Fig. 3a, b). Under clear-sky condition, \(R_{{{\text{L}} \downarrow }}\) were 395 Wm−2 over Guinea and 365 Wm−2 over Sahel while \(R_{{{\text{L}} \uparrow }}\) were − 445 and − 470 Wm−2 over Guinea and Sahel, respectively (Fig. 3c, d).
The net (all-wave) radiation, R, were about 180 Wm−2 over Guinea, 240 Wm−2 over Savannah and 280 Wm−2 over Sahel (Fig. 4a). This demonstrated that R generally increases with increasing latitude. Cloud cover fraction were about 80% over Guinea, 50% over Savannah and 45% over Sahel (Fig. 4b). Surface albedo and temperature were 0.20:25.0 °C over Guinea and 0.30:28.0 °C over Sahel, respectively (Fig. 4c, d). Observed spatial distribution of R over the country suggested higher surface heating in the semi-arid regions (Savannah and Sahel) than in the Guinea. Similar spatial variations in R have been reported in the analysis of net radiation data over West Africa by Ojo [79] and Hayward and Oguntoyinbo [80]. These results supported the fact that R is highly dependent on geographical location, time of the day, season, cloud cover, surface temperature, and type and conditions of the surface as indicated by albedo and emissivity [81, 82]. Increased \(R_{{{\text{S}} \downarrow }}\) and R with increasing latitude have been attributed to the observed spatial pattern of cloud cover [76]. Different levels and categories of cloud have been found to reduce \(R_{{{\text{S}} \downarrow }}\) significantly in the tropics [25]. Thus, future changes in cloudiness and atmospheric aerosols could have significant impacts on surface temperature and the rate of evapotranspiration, with important consequences on atmosphere–surface interactions and the regional hydrological cycle as speculated by Bouniol et al. [25]. In addition, we found that the potential of the ground surface to reflect \(R_{{{\text{S}} \downarrow }}\) is higher in the Sahel region as remonstrated by the spatial distribution of surface albedo in Fig. 4c. This supports higher \(R_{{{\text{S}} \uparrow }}\) recorded in Sahel compared to the Guinea zone in the south. Variations in cloudiness have been found to significantly modulate the atmospheric emissivity, temperature distribution and the general circulation of the atmosphere which are the most important regulators of the Earth’s climate [14, 83]. Thus, potential future variations in cloud cover and radiation budget over the country could have significant impact on the regional climate. Moreover, the observed pattern of cloud cover produced lower \(R_{{{\text{S}} \downarrow }}\) (~ 200 Wm−2) in Guinea than (~ 265 Wm−2) Sahel but higher \(R_{{{\text{L}} \downarrow }}\) (~ 400 Wm−2) over Guinea than (~ 380 Wm−2) Sahel. This is a signal that higher cloud cover fraction enhances \(R_{{{\text{L}} \downarrow }}\) [30]. Higher temperature obtained in Sahel could be attributed to higher R recorded in the zone. However, surface temperature in Guinea is moderated by cool monsoon air from the Atlantic Ocean (known as the West African Monsoon, WAM) and the presence of thick vegetation in the region [52, 55, 84] which significantly reduces warming effects of enhanced \(R_{{{\text{L}} \downarrow }}\) over the region.
3.2 Inter-annual variations and trends
Figures 5 and 6 represent the inter-annual variations (in terms of standardized anomaly) and the trend lines of the four radiation components under all-sky and clear-sky conditions, respectively. Results suggested high spatial and temporal inter-annual variability in radiation components over the country during the study period (1983–2018). For example, both \(R_{{{\text{S}} \downarrow }}\) and \(R_{{{\text{S}} \uparrow }}\) had more of negative anomalies, while positive anomalies were predominant for \(R_{{{\text{L}} \downarrow }}\) and \(R_{{{\text{L}} \uparrow }}\) under all-sky condition in all the three climatic zones (Fig. 5). However, all the four radiation components under clear-sky showed positive anomalies (Fig. 6). The anomalies obtained for all the radiation components under both sky conditions ranged between − 2.2 and 2.2.
Summary of results of all the trend analysis is presented in Table 1. The positive values of MK statistics indicate upward trend line, while the negative values show the downward trend at p = 0.01, 0.05, and 0.10 confidence levels. Results revealed decreasing trends in \(R_{{{\text{S}} \downarrow }}\) (Guinea = − 0.268 Wm−2 year−1, Savannah = − 0.207 Wm−2 year−1 and Sahel = − 0.116 Wm−2 year−1) and \(R_{{{\text{S}} \uparrow }}\) (Guinea = − 0.218 Wm−2 year−1, Savannah = − 0.165 Wm−2 year−1 and Sahel = − 0.084 Wm−2 year−1) under all-sky conditions (Table 1). These trends in SW radiation components were found to be significant except in the Sahel zone. Results further indicated that there have been statistically significant increases in \(R_{{{\text{L}} \downarrow }}\) (Guinea = 0.585, Savannah = 0.257 and Sahel = 0.215) and \(R_{{{\text{L}} \uparrow }}\) (Savannah = 0.422 and Sahel = 0.124). However, the upward trend of \(R_{{{\text{L}} \uparrow }}\) (0.018) over Guinea was found to be insignificant. Consequently, decreasing trends (− 0.110 to − 0.536 Wm−2 year−1) in R were obtained under all-sky in all the zones. Cloud cover showed significant increasing trends over Guinea (0.473% year−1) and Sahel (0.081% year−1), but decreasing and insignificant trend was obtained over Savannah (− 0.026% year−1). On the other hand, all the four radiation components showed increasing trends (0.114–0.559 Wm−2 year−1) under clear-sky conditions in all the zones (Table 1). These changes were found to be significant except the trend of \(R_{{{\text{L}} \uparrow }}\) (0.017 Wm−2 year−1) obtained over the Guinea zone. Significant upward trends in R (0.256–0.807 Wm−2 year−1) were estimated over all zones, contrary to downward trends obtained under all-sky condition. Results showed significant upward trends in temperature under all-sky (0.009–0.059 °C year−1) and clear-sky (0.019–0.072 °C year−1) conditions over the entire region. In brief, results of the 36-year trend analysis suggested warmer climate over the entire country, in agreement with the previous studies [48, 52] and demonstrated that the surface radiation and temperature had been significantly perturbed due to changes in cloud-radiative forcing as speculated in the literature [e.g. 3, 21, 23–36].
3.3 Seasonal mean variations
Variations in seasonal or annual cycle of surface radiation balance in different designated climatic zones of Nigeria are illustrated in Fig. 7. The lowest (157 Wm−2 (Guinea), 181 Wm−2 (Savannah) and 220 Wm−2 (Sahel)) and the peak (231 Wm−2 (Guinea), 260 Wm−2 (Savannah) and 282 Wm−2 (Sahel)) of \(R_{{{\text{S}} \downarrow }}\) occurred in July/August and February/April over the country, respectively (Fig. 7a). \(R_{{{\text{S}} \uparrow }}\) was generally lower than \(R_{{{\text{S}} \downarrow }}\) and recorded its lowest (− 60 Wm−2 (Guinea), − 70 Wm−2 (Savannah) and − 86 Wm−2 (Sahel)) and the highest (− 70 Wm−2 (Guinea), − 83 Wm−2 (Savannah) and − 115 Wm−2 (Sahel)) in August and March/April, respectively (Fig. 7c). In brief, the highest values of \(R_{{{\text{S}} \downarrow }}\) and \(R_{{{\text{S}} \uparrow }}\) were obtained in late dry season (February–March in Guinea; April–May in Savannah and Sahel) and the least in the wet season (July–August) over the country. Seasonal pattern of \(R_{{{\text{L}} \downarrow }}\) was opposite to the \(R_{\text{S}}\) components with the peak in dry season and the lowest in the wet. This might not be unconnected with the cloud-radiative impact. Higher cloud cover during the wet season increases the atmospheric emissivity and thus enhances \(R_{{{\text{L}} \downarrow }}\). Observed spatial pattern and magnitudes of \(R_{{{\text{L}} \uparrow }}\) followed that of temperature (with the highest over the north) as explained by the Stefan–Boltzmann Eq. (3).
Figure 8 shows the seasonal variations in net radiation (R), cloud cover, surface albedo and temperature. Results showed that R had the least values (100, 121 and 171 Wm−2 over Guinea, Savannah and Sahel, respectively) in the peak of the wet season and the highest (245 Wm−2 (Guinea), 310 Wm−2 (Savannah and Sahel)) in dry season (Fig. 8a). The peak of cloud cover (79% (Guinea), 80% (Savannah, and 66% (Sahel)) occurred in wet season (August–September), while the least (38% (Guinea), 22% (Savannah, and 21% (Sahel)) were recorded in the dry period (January–March) (Fig. 8b). Seasonal variations in surface albedo were similar in Guinea and Savannah zones with the peak (0.22 (Guinea) and 0.28 (Savannah)) and the lowest values (0.17 (Guinea) and 0.18 (Savannah)) in wet and dry seasons, respectively. In contrast, the maximum (0.29) and the least (0.25) surface albedo were obtained in dry and wet seasons, respectively (Fig. 6c). Similarly, the highest (26.9 °C (Guinea), 28.3 °C (Savannah, and 31.2 °C (Sahel)) and the least (24.4 °C (Guinea), 23.4 °C (Savannah, and 22.1 °C (Sahel)) temperatures were recorded in dry and wet seasons. These are indications that the entire country is warmer in dry season than the wet. Results support the fact that cooling effect during the monsoon season is mainly due to the dominance of \(R_{\text{S}}\) in the net cloud-radiative forcing [25]. Higher cloudiness during the wet (monsoon) season could be attributed to lower R values recorded during this season [85]. In addition, the results in agreements with the literature [7, 13, 14, 86] suggested that higher albedo during the wet season was due to rise is soil moisture. Over Sahel, however, the least in surface albedo occurred in wet season (i.e., September) and highest in the dry (March). This could be as a results of combined effects of surface cover type, color, surface roughness or textural characteristics, mineral composition and organic matter more than the soil moisture content in the region. However, this is at variant with the findings of Audu et al. [15] where albedo estimate over a location in the Sahel region was reported to be higher in wet season (September) than dry season. The reasons for this disparity could not be ascertained. However, the reason could be attributed to the latent error in (NASA’s MERRA) satellite surface measurements due to interference of high atmospheric aerosol and Harmattan dust in West African Sahel during the dry season.
3.4 Relationship between cloudiness, surface radiation budget and temperature
The relationship between cloud cover and radiation budget components as well as temperature is shown in Fig. 9. The results indicated significant negative correlations (r ~ − 0.80 at p ≤ 0.05) between cloud cover and \(R_{{{\text{S}} \downarrow }}\) over Guinea and Savannah zones but positive and insignificant (r ≤ 0.40) over most parts of the Sahel (Fig. 9a). In addition, cloud cover showed positive and significant correlation (r ~ 0.60) with \(R_{{{\text{S}} \uparrow }}\) over Guinea, while the positive correlations (r ≤ 0.40) obtained over most parts of Savannah and Sahel were insignificant (Fig. 9b). The correlations between cloud cover and \(R_{{{\text{L}} \downarrow }}\) were generally high, positive and significant (0.90 ≤ r ≤ 0.99) over the entire country (Fig. 9c). However, \(R_{{{\text{L}} \uparrow }}\) produced negative and significant (− 0.90 ≤ r ≤ − 0.99) correlations with cloud cover over the entire country (Fig. 9d). These are indications that increased cloud cover fraction enhances \(R_{{{\text{L}} \downarrow }}\) but inhibits \(R_{{{\text{L}} \uparrow }}\). As expected, net all-wave radiation, R exhibited significant negative correlations (− 0.70 ≤ r ≤ − 0.95) with cloud cover over the entire country (Fig. 9e). The interpretation is that, future increase in cloudiness could lead to decrease in surface net radiation. However, r values obtained for cloud cover and temperature were generally negative over Guinea (r ~ − 0.45) but positive over most parts of Savannah and Sahel (r ~ 0.65); all significant at p < 0.05 (Fig. 9f). It suggests that the higher the cloud cover the more the surface cooling (i.e., lower temperature) over Guinea but more warming over the semi-arid regions. The result is a clear signal that cloudiness plays a major role in modulating surface radiation budget and temperature over the country.
3.5 Impacts of cloudiness on surface radiation budget and temperature
Table 2 gives the summary of regression analysis carried out to describe the contribution of cloudiness to surface radiation balance and temperature. The total variance explained by cloud cover (i.e., its contribution) to net all-wave radiation were found to be 23.9% (Guinea), 25.8% (Savannah) and 21.0% (Sahel); all significant at p < 0.05 (Table 2). In addition, cloud cover had significant impacts (20–33%) on all the four radiation components in the country except for both \(R_{{{\text{S}} \uparrow }}\) and \(R_{{{\text{S}} \downarrow }}\) over Sahel and \(R_{{{\text{S}} \uparrow }}\) over Savannah. The total variance explained by cloud cover to variation in temperature were 2.3% (Guinea), 2.0% (Savannah) and 13.8% (Sahel). The changes in temperature accounted for by 13.8% variation in the predictor (cloud cover) over Sahel was found to be significant at p < 0.05. This suggested that cloud cover had insignificant impacts on temperature over Guinea and Savannah. This could be attributed to the influence of WAM and forest on warming reduction over the region as reported in previous studies [52, 84].
Figure 10 explains cloud-radiative effects (CRE) in \(R_{\text{S}}\) (tagged CRESW) and \(R_{\text{L}}\) (tagged CRELW) radiation over Nigeria. Negative CRE means cooling effects, while positive indicates warming. Generally, the estimated CRESW was negative (Fig. 10a), while CRELW was positive (Fig. 10b) over the entire country. It suggested cloud-radiative cooling effect of \(R_{\text{S}}\) which decreased latitudinally from the coast to continental areas and heating effect of \(R_{\text{L}}\) which showed increment from the coast to the continental areas. For example, estimated CRESW were − 55 Wm−2 (Guinea), − 30 Wm−2 (Savannah) and − 10 Wm−2 (Sahel), while CRELW were 25, 45 and 65 Wm−2 in Guinea, Savannah and Sahel zones, respectively. The heating effect of CRELW in the northern parts of the country was completely neutralized by cooling effect of CRESW to produce a net surface warming (positive CRE) over the zones (25 Wm−2 in Savannah and 50 Wm−2 in Sahel; Fig. 10c). Miller et al. [40] have also reported similar pattern of net cloud-radiative effects over the West African Sahel. The resultant heating effects of CRE in Sahel could be attributed to the enhanced \(R_{{{\text{L}} \uparrow }}\) due to higher surface temperature triggered by higher incoming solar radiation and overall drier and less cloudy atmosphere compared to Guinea zone [83]. However, heating effect of CRELW in the coastal areas was not strong enough to neutralize the cooling effect of CRESW and thus a net cooling cloud-radiative effect was obtained over the region (− 30 Wm−2; Fig. 10c). These patterns of results and the range of values obtained are in agreement with those reported in Henderson et al. [26] and Wild et al. [87]. Finally, our findings demonstrated that the surface radiation budget and temperature over the country were significantly impacted by changes in cloudiness due to cloud-radiative effects [36, 88, 89].
4 Conclusion
This study has investigated the impacts of cloudiness on near surface radiation and temperature in Nigeria, West Africa. To achieve this objective, it used the Modern-Era Retrospective Analysis for Research and Applications (MERRA) datasets sponsored by the National Aeronautics and Space Administration (NASA). Our findings revealed that:
-
1.
Downwelling shortwave (SW) radiation (\(R_{{{\text{S}} \downarrow }}\)), upwelling longwave (LW) radiation (\(R_{{{\text{L}} \uparrow }}\)), net (all-wave) radiation and temperature increased latitudinally from the coast to inland or continental areas. However, cloud cover and downwelling LW radiations (\(R_{{{\text{L}} \downarrow }}\)) were found to decrease inland from the coast.
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2.
Inter-annual and seasonal changes in cloud cover, temperature and the radiation budget components varied significantly across the three designated climate zones (i.e., Guinea, Savannah and Sahel).
-
3.
Under all-sky conditions, significant decreasing trends in \(R_{{{\text{S}} \downarrow }}\) (− 0.207 to − 0.268 Wm−2 year−1) and \(R_{{{\text{S}} \uparrow }}\) (− 0.165 to − 0.218 Wm−2 year−1) were obtained in most parts of the country. However, results indicated that there have been statistically significant increases in \(R_{{{\text{L}} \downarrow }}\) (0.257–0.585 Wm−2 year−1) and \(R_{{{\text{L}} \uparrow }}\) (0.124–0.422 Wm−2 year−1) during the study period. In addition, significant decreasing trends (− 0.110 to − 0.536 Wm−2 year−1) in R but significant increasing trends in cloud cover were obtained in most parts of the country.
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4.
Under clear-sky conditions, however, all the four radiation components showed increasing trends (0.114–0.559 Wm−2 year−1) in most parts of the country while R indicated significant increasing R trends (0.256–0.807 Wm−2 year−1) in all zones.
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5.
The annual trends of temperature under all-sky (0.009–0.059 °C year−1) and clear-sky (0.019–0.072 °C year−1) conditions were observed to have increased significantly over the entire region.
-
6.
The relationship between monthly average values of cloud cover and net radiation was negative and significant at p < 0.05 over the entire country. However, relationship between cloud cover and temperature was significant and negative over Guinea but positive over most parts of Savannah and Sahel.
-
7.
Furthermore, changes in LW radiation components and net radiation were accounted for by 20 to 33% variations in cloud cover and the contributions were found to be significant across the zones.
-
8.
Cloud-radiative cooling effect of SW radiation (CRESW) decreased latitudinally from the coast to inland areas, while the cloud-radiative heating effect of LW radiation (CRELW) increased inland from the coast. Furthermore, the heating effect of CRELW in the Savannah and Sahel zones was completely defused by cooling effect of CRESW to produce a net surface warming (25 Wm−2 (Savannah) and 50 Wm−2 (Sahel)). In the Guinea zone, however, a net cooling cloud-radiative effect (− 30 Wm−2) was obtained.
-
9.
We concluded that the surface radiation budget and temperature were significantly impacted by variations in cloudiness over the country.
-
10.
The study has implications for improved understanding of the role of clouds in moderating the surface radiation budget and temperature in different climatic zones of Nigeria, West Africa.
-
11.
Presumably, the uncertainties in the NASA’s MERRA reanalysis due to its relatively coarse resolution could limit the utility of the datasets for this research. Thus, further work is necessary to confirm the findings of this present study using high-resolution reanalyses and ground station observations of surface solar radiation components.
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The authors are indebted to the National Aeronautics and Space Administration (NASA) and the collaborating Institutions and Agencies under the Prediction of Worldwide Energy Resource (POWER) project for providing the climatological datasets used in this study.
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Matthew, O.J., Ayoola, M.A., Ogolo, E.O. et al. Impacts of cloudiness on near surface radiation and temperature in Nigeria, West Africa. SN Appl. Sci. 2, 2127 (2020). https://doi.org/10.1007/s42452-020-03961-y
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DOI: https://doi.org/10.1007/s42452-020-03961-y